Long Text and Multi-Table Summarization: Dataset and Method
This addresses the need for more informative summaries in business and financial reporting by providing a new dataset and methods, though it is incremental as it builds on existing summarization techniques.
The authors tackled the problem of summarizing report documents containing both long text and multiple tables, which existing datasets and methods overlook, by introducing FINDSum, a large-scale dataset of 21,125 annual reports, and showing that joint consideration of textual and tabular data improves informativeness.
Automatic document summarization aims to produce a concise summary covering the input document's salient information. Within a report document, the salient information can be scattered in the textual and non-textual content. However, existing document summarization datasets and methods usually focus on the text and filter out the non-textual content. Missing tabular data can limit produced summaries' informativeness, especially when summaries require covering quantitative descriptions of critical metrics in tables. Existing datasets and methods cannot meet the requirements of summarizing long text and multiple tables in each report. To deal with the scarcity of available data, we propose FINDSum, the first large-scale dataset for long text and multi-table summarization. Built on 21,125 annual reports from 3,794 companies, it has two subsets for summarizing each company's results of operations and liquidity. To summarize the long text and dozens of tables in each report, we present three types of summarization methods. Besides, we propose a set of evaluation metrics to assess the usage of numerical information in produced summaries. Dataset analyses and experimental results indicate the importance of jointly considering input textual and tabular data when summarizing report documents.